期刊文献+

FORECASTING CHINA'S FOREIGN TRADE VOLUME WITH A KERNEL-BASED HYBRID ECONOMETRIC-AI ENSEMBLE LEARNING APPROACH 被引量:5

FORECASTING CHINA'S FOREIGN TRADE VOLUME WITH A KERNEL-BASED HYBRID ECONOMETRIC-AI ENSEMBLE LEARNING APPROACH
原文传递
导出
摘要 Due to the complexity of economic system and the interactive effects between all kinds of economic variables and foreign trade, it is not easy to predict foreign trade volume. However, the difficulty in predicting foreign trade volume is usually attributed to the limitation of many conventional forecasting models. To improve the prediction performance, the study proposes a novel kernel-based ensemble learning approach hybridizing econometric models and artificial intelligence (AI) models to predict China's foreign trade volume. In the proposed approach, an important econometric model, the co-integration-based error correction vector auto-regression (EC-VAR) model is first used to capture the impacts of all kinds of economic variables on Chinese foreign trade from a multivariate linear anal- ysis perspective. Then an artificial neural network (ANN) based EC-VAR model is used to capture the nonlinear effects of economic variables on foreign trade from the nonlinear viewpoint. Subsequently, for incorporating the effects of irregular events on foreign trade, the text mining and expert's judgmental adjustments are also integrated into the nonlinear ANN-based EC-VAR model. Finally, all kinds of economic variables, the outputs of linear and nonlinear EC-VAR models and judgmental adjustment model are used as input variables of a typical kernel-based support vector regression (SVR) for en- semble prediction purpose. For illustration, the proposed kernel-based ensemble learning methodology hybridizing econometric techniques and AI methods is applied to China's foreign trade volume predic- tion problem. Experimental results reveal that the hybrid econometric-AI ensemble learning approach can significantly improve the prediction performance over other linear and nonlinear models listed in this study. Due to the complexity of economic system and the interactive effects between all kinds of economic variables and foreign trade, it is not easy to predict foreign trade volume. However, the difficulty in predicting foreign trade volume is usually attributed to the limitation of many conventional forecasting models. To improve the prediction performance, the study proposes a novel kernel-based ensemble learning approach hybridizing econometric models and artificial intelligence (AI) models to predict China's foreign trade volume. In the proposed approach, an important econometric model, the co-integration-based error correction vector auto-regression (EC-VAR) model is first used to capture the impacts of all kinds of economic variables on Chinese foreign trade from a multivariate linear analysis perspective. Then an artificial neural network (ANN) based EC-VAR model is used to capture the nonlinear effects of economic variables on foreign trade from the nonlinear viewpoint. Subsequently, for incorporating the effects of irregular events on foreign trade, the text mining and expert's judgmental adjustments are also integrated into the nonlinear ANN-based EC-VAR model. Finally, all kinds of economic variables, the outputs of linear and nonlinear EC-VAR models and judgmental adjustment model are used as input variables of a typical kernel-based support vector regression (SVR) for ensemble prediction purpose. For illustration, the proposed kernel-based ensemble learning methodology hybridizing econometric techniques and AI methods is applied to China's foreign trade volume prediction problem. Experimental results reveal that the hybrid econometric-AI ensemble learning approach can significantly improve the prediction performance over other linear and nonlinear models listed in this study.
出处 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2008年第1期1-19,共19页 系统科学与复杂性学报(英文版)
基金 the National Natural Science Foundation of China under Grant Nos.70601029 and 70221001 the Knowledge Innovation Program of the Chinese Academy of Sciences under Grant Nos.3547600,3046540,and 3047540 the Strategy Research Grant of City University of Hong Kong under Grant No.7001806
关键词 中国 对外贸易 预测方法 计量经济学 Artificial neural networks, error-correction vector auto-regression, foreign trade prediction, hybrid ensemble learning, kernel-based method, support vector regression.
  • 相关文献

参考文献1

二级参考文献36

  • 1G.P.Zhang, E. B. Patuwo, M. Y. Hu, A simulation study of artificial neural networks for nonlinear time-series forecasting, Computers and Operations Research, 2001, 28: 381-396.
  • 2A. S. Chen, M. T. Leung, Regression neural network for error correction in foreign exchange rate forecasting and trading, Computers and Operations Research, 2004, 31(7): 1049-1068.
  • 3J. W. Denton, How good axe neural networks for causal forecasting?, Journal of Business Forecasting, 1995, 14: 17-20.
  • 4I. S. Markham, T. R. Rakes, The effect of sample size and variability of data on the comparative performance of artificial networks and regression, Computers and Operations Research, 1998, 25:251-263.
  • 5G. P. Zhang, Time series forecasting using a hybrid ARIMA and neural network model, Neurocomputing, 2003, 50: 159-175.
  • 6B.Edmundson, M. Lawrence, M. O'Connor, The use of non-time series information in sales forecasting: a case study, Journal of Forecasting, 1988, 7(3): 201-211.
  • 7C. Wolfe, B. Flores, Judgmental adjustment of earning forecasts, Journal of Forecasting, 1990,9(4): 389-405.
  • 8S. Y. Wang, TEI@I: a new methodology for studying complex systems, presented at Workshop on Complexity Science, Tsukuba, April 22-23, 2004.
  • 9S. Y. Wang, L. A. Yu, TEI@I-a new methodology for studying volatility of international oil price, presented at the Open Conference of the International Research Team of AMSS on Complexity Science, Beijing, June 17-19, 2004.
  • 10L. A. Yu, S. Y. Wang, K. K. Lal, A hybrid AI system for forex forecasting and trading dectsion through integration of artificial neural network and rule-based expert system, Submitted to Expert Systems with Applications, 2003.

共引文献72

同被引文献34

引证文献5

二级引证文献15

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部